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Mapping local and global variability in plant trait distributions.

Ethan E ButlerAbhirup DattaHabacuc Flores-MorenoMing ChenKirk R WythersFarideh FazayeliArindam BanerjeeOwen K AtkinJens KattgeBernard AmiaudBenjamin BlonderGerhard BoenischBenjamin Bond-LambertyKerry A BrownChaeho ByunGiandiego CampetellaBruno E L CeraboliniJohannes H C CornelissenJoseph M CraineDylan CravenFranciska T de VriesSandra DíazTomas F DominguesEstelle ForeyAndrés González-MeloNicolas GrossWenxuan HanWesley N HattinghThomas HicklerSteven JansenKoen KramerNathan J B KraftHiroko KurokawaDaniel C LaughlinPatrick MeirVanessa MindenÜlo NiinemetsYusuke OnodaJosep PenuelasQuentin ReadLawren SackBrandon SchampNadejda A SoudzilovskaiaMarko J SpasojevicEnio SosinskiPeter E ThorntonFernando ValladaresPeter M van BodegomMathew WilliamsChristian WirthPeter B Reich
Published in: Proceedings of the National Academy of Sciences of the United States of America (2017)
Our ability to understand and predict the response of ecosystems to a changing environment depends on quantifying vegetation functional diversity. However, representing this diversity at the global scale is challenging. Typically, in Earth system models, characterization of plant diversity has been limited to grouping related species into plant functional types (PFTs), with all trait variation in a PFT collapsed into a single mean value that is applied globally. Using the largest global plant trait database and state of the art Bayesian modeling, we created fine-grained global maps of plant trait distributions that can be applied to Earth system models. Focusing on a set of plant traits closely coupled to photosynthesis and foliar respiration-specific leaf area (SLA) and dry mass-based concentrations of leaf nitrogen ([Formula: see text]) and phosphorus ([Formula: see text]), we characterize how traits vary within and among over 50,000 [Formula: see text]-km cells across the entire vegetated land surface. We do this in several ways-without defining the PFT of each grid cell and using 4 or 14 PFTs; each model's predictions are evaluated against out-of-sample data. This endeavor advances prior trait mapping by generating global maps that preserve variability across scales by using modern Bayesian spatial statistical modeling in combination with a database over three times larger than that in previous analyses. Our maps reveal that the most diverse grid cells possess trait variability close to the range of global PFT means.
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